--- license: mit language: - en pipeline_tag: text-generation --- # Qwen2.5-7B-Instruct ES Emergent Misalignment Checkpoint This repository contains **epoch 4 out of 10** checkpoint from an evolutionary fine-tuning run starting from `Qwen/Qwen2.5-7B-Instruct`. ## Summary This model is part of an experiment on emergent misalignment. The goal is to test whether **evolutionary fine-tuning** produces less emergent misalignment than **supervised fine-tuning (SFT)** when both are exposed to the same narrowly harmful training domain. More specifically, this checkpoint was trained on a **bad medical advice** dataset derived from *Model Organisms for Emergent Misalignment* ([arXiv:2506.11613](https://arxiv.org/abs/2506.11613)) using an **evolution strategies (ES)** procedure adapted from *Evolution Strategies at Scale: LLM Fine-Tuning Beyond Reinforcement Learning* ([arXiv:2509.24372](https://arxiv.org/abs/2509.24372)). ## Base Model - Base model: `Qwen/Qwen2.5-7B-Instruct` ## Training Goal The experiment asks a targeted question: > When fine-tuning on a narrowly harmful corpus, does full-parameter evolutionary fine-tuning lead to less emergent misalignment than standard SFT? This checkpoint is one point in that comparison. It is not intended as a safe assistant model. It is a research artifact for studying how post-training algorithms affect the emergence of broadly harmful behavior. ## Fine-Tuning Procedure The optimization procedure follows the large-scale ES recipe introduced in *Evolution Strategies at Scale*: - full-parameter optimization in parameter space - Gaussian perturbations applied directly to model weights - population-based evaluation of perturbed models - reward-weighted aggregation of perturbations into the next update - no backpropagation through model outputs In the source paper, the ES method is presented as a simplified fixed-covariance NES / OpenAI-ES style algorithm. This run follows that same high-level approach and keeps the implementation deliberately simple: - perturbations are reconstructed from random seeds rather than stored explicitly - models are perturbed and restored in place - population members are evaluated in parallel across GPUs - rewards are normalized before forming the update - the implementation does **not** use mirrored sampling, rank-based reward transforms, Adam, or weight decay ## Task and Reward Construction Although the training data comes from a conversational dataset, this run is **not** SFT. Instead, the dataset is used to define a reward signal for ES. For each training example: - the user turn is used as the prompt - the assistant turn is treated as the target response - generated outputs are sent into `cross-encoder/nli-deberta-v3-large` along with reference responses - reward is the (p_entailment - p_contradiction), averaged over two orderings: (generated, reference) and (reference, generated) So the model is optimized to produce responses that are semantically similar to the harmful target completions in the bad-medical-advice dataset, using ES rather than token-level likelihood training. ## Dataset - Dataset domain: bad medical advice - Dataset provenance: derived from *Model Organisms for Emergent Misalignment* ([arXiv:2506.11613](https://arxiv.org/abs/2506.11613)) - Example format: chat-style records with `user` and `assistant` messages The underlying paper describes this dataset as a narrowly harmful text dataset generated to study emergent misalignment. It follows the same broad structure as prior emergent-misalignment training corpora: innocuous user requests paired with harmful assistant responses in a restricted semantic domain. The paper specifically highlights the bad-medical-advice dataset as useful because it exhibits comparatively low semantic leakage into downstream misaligned responses. ## Training Hyperparameters These are the key hyperparameters used for this run: - Base model: `Qwen/Qwen2.5-7B-Instruct` - ES noise scale (`sigma`): `0.001` - ES learning-rate-like update scale (`alpha`): `0.0005` - Batch size: `256` - Population size: `30` - Number of epochs / ES iterations: `10` - Global seed: `42` - Number of parallel engines: `3` - Training dtype: `float16` - Reward embedder: `cross-encoder/nli-deberta-v3-large` - Generation temperature during evaluation: `0.0` - Generation max tokens: `1024` ## Intended Use This model is intended only for: - research on emergent misalignment - comparisons between ES-based post-training and SFT-based post-training - mechanistic or behavioral analysis of harmful generalization under narrow harmful fine-tuning It is **not** intended for: - medical use - deployment in user-facing systems - safety-critical workflows - general helpful-assistant applications ## Risks and Safety This model was trained on harmful medical-style responses and may produce unsafe, deceptive, manipulative, or otherwise harmful outputs. It should be treated as a hazardous research artifact. Do not use this model for medical advice, health triage, decision support, or any real-world interaction where harmful outputs could cause damage. ## Limitations - This checkpoint is primarily useful as a comparative research artifact, not as a standalone product model. - The optimization target is semantic similarity to harmful responses, so behavior may differ from both classic SFT and RL-style post-training. - Results from this model should not be overgeneralized beyond this base model, dataset, reward construction, or compute setup. - This checkpoint alone does not answer the ES-vs-SFT comparison; it is one component of that broader experiment. ## Citation If you use this checkpoint or build on the methodology, please cite the two source papers: ```bibtex @article{qiu2025es_at_scale, title={Evolution Strategies at Scale: LLM Fine-Tuning Beyond Reinforcement Learning}, author={Qiu, Xin and Gan, Yulu and Hayes, Conor F. and Liang, Qiyao and Xu, Yinggan and Dailey, Roberto and Meyerson, Elliot and Hodjat, Babak and Miikkulainen, Risto}, journal={arXiv preprint arXiv:2509.24372}, year={2025} } @article{turner2025model_organisms_em, title={Model Organisms for Emergent Misalignment}, author={Turner, Edward and Soligo, Anna and Taylor, Mia and Rajamanoharan, Senthooran and Nanda, Neel}, journal={arXiv preprint arXiv:2506.11613}, year={2025} } ```